Exploring diffusion imaging as a predictor of anxiety disorders

Anxiety disorders are the most common mental disorders, but diagnoses are based on subjective symptoms. Thus, there is active interest to find objective biomarkers of anxiety such as in neuroimaging. Some diffusion imaging markers have been found, but most studies have small sample sizes, rendering...

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Main Author: Liauw, Claudia Yong Tong
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Format: Final Year Project
Language:English
Published: Nanyang Technological University 2023
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Online Access:https://hdl.handle.net/10356/166643
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spelling sg-ntu-dr.10356-1666432023-05-08T15:33:38Z Exploring diffusion imaging as a predictor of anxiety disorders Liauw, Claudia Yong Tong - School of Biological Sciences McGovern Institute for Brain Research, Massachusetts Institute of Technology Satrajit Ghosh satra@mit.edu Science::Biological sciences::Human anatomy and physiology::Neurobiology Anxiety disorders are the most common mental disorders, but diagnoses are based on subjective symptoms. Thus, there is active interest to find objective biomarkers of anxiety such as in neuroimaging. Some diffusion imaging markers have been found, but most studies have small sample sizes, rendering effect sizes too small for individual predictions. This study explored data from the Healthy Brain Network (HBN), one of the largest youth datasets available. It aimed to replicate findings of tracts associated with generalised anxiety disorder (GAD) or social anxiety disorder (SAD) in the literature using statistical analysis and use machine learning to model diffusion imaging data in order to predict GAD or SAD. Analyses of a dataset of 318 individuals from the HBN dataset could not replicate existing findings in the literature and the tract-based diffusion imaging markers were unable to predict GAD nor SAD. Machine learning models showed significant prediction of SAD from demographics data, but the prediction score was not high. The results suggest that tract-based properties from diffusion imaging may need to be augmented with other modalities such as function and structure to capture individual differences in anxiety. Bachelor of Science in Biological Sciences 2023-05-08T05:15:43Z 2023-05-08T05:15:43Z 2023 Final Year Project (FYP) Liauw, C. Y. T. (2023). Exploring diffusion imaging as a predictor of anxiety disorders. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/166643 https://hdl.handle.net/10356/166643 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Biological sciences::Human anatomy and physiology::Neurobiology
spellingShingle Science::Biological sciences::Human anatomy and physiology::Neurobiology
Liauw, Claudia Yong Tong
Exploring diffusion imaging as a predictor of anxiety disorders
description Anxiety disorders are the most common mental disorders, but diagnoses are based on subjective symptoms. Thus, there is active interest to find objective biomarkers of anxiety such as in neuroimaging. Some diffusion imaging markers have been found, but most studies have small sample sizes, rendering effect sizes too small for individual predictions. This study explored data from the Healthy Brain Network (HBN), one of the largest youth datasets available. It aimed to replicate findings of tracts associated with generalised anxiety disorder (GAD) or social anxiety disorder (SAD) in the literature using statistical analysis and use machine learning to model diffusion imaging data in order to predict GAD or SAD. Analyses of a dataset of 318 individuals from the HBN dataset could not replicate existing findings in the literature and the tract-based diffusion imaging markers were unable to predict GAD nor SAD. Machine learning models showed significant prediction of SAD from demographics data, but the prediction score was not high. The results suggest that tract-based properties from diffusion imaging may need to be augmented with other modalities such as function and structure to capture individual differences in anxiety.
author2 -
author_facet -
Liauw, Claudia Yong Tong
format Final Year Project
author Liauw, Claudia Yong Tong
author_sort Liauw, Claudia Yong Tong
title Exploring diffusion imaging as a predictor of anxiety disorders
title_short Exploring diffusion imaging as a predictor of anxiety disorders
title_full Exploring diffusion imaging as a predictor of anxiety disorders
title_fullStr Exploring diffusion imaging as a predictor of anxiety disorders
title_full_unstemmed Exploring diffusion imaging as a predictor of anxiety disorders
title_sort exploring diffusion imaging as a predictor of anxiety disorders
publisher Nanyang Technological University
publishDate 2023
url https://hdl.handle.net/10356/166643
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